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DREAM:一种用于发现人工智能对受保护属性预测背后机制的框架。

DREAM: A framework for discovering mechanisms underlying AI prediction of protected attributes.

作者信息

Gadgil Soham U, DeGrave Alex J, Janizek Joseph D, Xu Sonnet, Nwandu Lotanna, Fonjungo Fonette, Lee Su-In, Daneshjou Roxana

机构信息

Paul G. Allen School of Computer Science and Engineering, University of Washington.

Medical Scientist Training Program, University of Washington.

出版信息

medRxiv. 2025 Jul 21:2024.04.09.24305289. doi: 10.1101/2024.04.09.24305289.

Abstract

Recent advances in Artificial Intelligence (AI) have started disrupting the healthcare industry, especially medical imaging, and AI devices are increasingly being deployed into clinical practice. Such classifiers have previously demonstrated the ability to discern a range of protected demographic attributes (like race, age, sex) from medical images with unexpectedly high performance, a sensitive task which is difficult even for trained physicians. In this study, we motivate and introduce a general explainable AI (XAI) framework called DREAM (DiscoveRing and Explaining AI Mechanisms) for interpreting how AI models trained on medical images predict protected attributes. Focusing on two modalities, radiology and dermatology, we are successfully able to train high-performing classifiers for predicting race from chest x-rays (ROC-AUC score of ~0.96) and sex from dermoscopic lesions (ROC-AUC score of ~0.78). We highlight how incorrect use of these demographic shortcuts can have a detrimental effect on the performance of a clinically relevant downstream task like disease diagnosis under a domain shift. Further, we employ various XAI techniques to identify specific signals which can be leveraged to predict sex. Finally, we propose a technique, which we call 'removal via balancing', to quantify how much a signal contributes to the classification performance. Using this technique and the signals identified, we are able to explain ~15% of the total performance for radiology and ~42% of the total performance for dermatology. We envision DREAM to be broadly applicable to other modalities and demographic attributes. This analysis not only underscores the importance of cautious AI application in healthcare but also opens avenues for improving the transparency and reliability of AI-driven diagnostic tools.

摘要

人工智能(AI)的最新进展已开始对医疗行业造成冲击,尤其是医学成像领域,并且人工智能设备正越来越多地被应用于临床实践。此类分类器此前已证明有能力从医学图像中辨别出一系列受保护的人口统计学属性(如种族、年龄、性别),其性能之高令人意外,而这是一项即便对训练有素的医生来说也颇具难度的敏感任务。在本研究中,我们激发并引入了一个名为DREAM(发现与解释人工智能机制)的通用可解释人工智能(XAI)框架,用于解读在医学图像上训练的人工智能模型如何预测受保护属性。聚焦于放射学和皮肤病学这两种模式,我们成功训练出了高性能分类器,用于从胸部X光片中预测种族(ROC-AUC分数约为0.96)以及从皮肤镜检查病变中预测性别(ROC-AUC分数约为0.78)。我们强调了在领域转移情况下,这些人口统计学捷径的不当使用会如何对诸如疾病诊断等临床相关下游任务的性能产生不利影响。此外,我们运用各种可解释人工智能技术来识别可用于预测性别的特定信号。最后,我们提出了一种名为“平衡消除”的技术,以量化一个信号对分类性能的贡献程度。利用该技术和所识别出的信号,我们能够解释放射学总性能的约15%以及皮肤病学总性能的约42%。我们设想DREAM可广泛应用于其他模式和人口统计学属性。这一分析不仅强调了在医疗保健中谨慎应用人工智能的重要性,还为提高人工智能驱动的诊断工具的透明度和可靠性开辟了道路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4271/12330423/7ce356a41116/nihpp-2024.04.09.24305289v2-f0001.jpg

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